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On the dynamic neural network toolbox design for identification, estimation and control

Isaac Chairez (Department of Mechatronics, Tecnológico de Monterrey, Campus Guadalajara, Mexico City, Mexico)
Israel Alejandro Guarneros-Sandoval (Department of Bioprocesses, UPIBI, Instituto Politécnico Nacional, Mexico City, Mexico)
Vlad Prud (Moscow State University, Moscow, Russian Federation)
Olga Andrianova (V.A. Trapeznikov Institute of Control Sciences of RAS, Moscow, Russian Federation)
Sleptsov Ernest (VNIIEM, Moscow, Russian Federation)
Viktor Chertopolokhov (Center “Supersonic”, Lomonosov Moscow State University, Moscow, Russian Federation)
Grigory Bugriy (Center “Supersonic”, Lomonosov Moscow State University, Moscow, Russian Federation)
Arthur Mukhamedov (Center “Supersonic”, Lomonosov Moscow State University, Moscow, Russian Federation)

Kybernetes

ISSN: 0368-492X

Article publication date: 19 October 2022

Issue publication date: 25 September 2023

112

Abstract

Purpose

There are common problems in the identification of uncertain nonlinear systems, nonparametric approximation, state estimation, and automatic control. Dynamic neural network (DNN) approximation can simplify the development of all the aforementioned problems in either continuous or discrete systems. A DNN is represented by a system of differential or recurrent equations defined in the space of vector activation functions with weights and offsets that are functionally associated with the input data.

Design/methodology/approach

This study describes the version of the toolbox, that can be used to identify the dynamics of the black box and restore the laws underlying the system using known inputs and outputs. Depending on the completeness of the information, the toolbox allows users to change the DNN structure to suit specific tasks.

Findings

The toolbox consists of three main components: user layer, network manager, and network instance. The user layer provides high-level control and monitoring of system performance. The network manager serves as an intermediary between the user layer and the network instance, and allows the user layer to start and stop learning, providing an interface to indirectly access the internal data of the DNN.

Research limitations/implications

Control capability is limited to adjusting a small number of numerical parameters and selecting functional parameters from a predefined list.

Originality/value

The key feature of the toolbox is the possibility of developing an algorithmic semi-automatic selection of activation function parameters based on optimization problem solutions.

Keywords

Acknowledgements

This paper forms part of a special section “CyberSystemic implications on the future of societies”, guest edited by Igor Perko.

Funding: The paper was prepared under financial support of the Ministry of Science and Higher Education of Russia within the Center “Supersonic” (agreement 075-15-2022-331 April 26, 2022).

Citation

Chairez, I., Guarneros-Sandoval, I.A., Prud, V., Andrianova, O., Ernest, S., Chertopolokhov, V., Bugriy, G. and Mukhamedov, A. (2023), "On the dynamic neural network toolbox design for identification, estimation and control", Kybernetes, Vol. 52 No. 9, pp. 2943-2957. https://doi.org/10.1108/K-04-2022-0487

Publisher

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Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

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